Unite.AI 03月29日 01:12
What AI Is Teaching Us About Ancient Civilizations
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文章探讨了人工智能(AI)在考古学领域的应用,重点介绍了AI如何加速古代文明的研究进程。通过自动化语言破译、定位考古遗址以及模拟古代文化,AI正在帮助学者们揭开历史的神秘面纱。文章指出,AI能够处理海量数据,发现人类难以察觉的细节,从而推动考古学研究取得突破。尽管如此,文章也提醒人们在使用AI时应保持谨慎,警惕潜在的偏差和不准确性,强调了人类在解读和验证AI结果中的重要性。

🧐 AI加速语言破译:传统的手工破译古代语言耗时且容易出错。自然语言处理(NLP)技术使AI能够识别语言的细微差别,快速解码古代文字。例如,AI在短时间内发现了数百个新的纳斯卡巨型地画。

🗺️ AI定位考古遗址:AI结合卫星图像和雷达技术,能够探测被掩埋的文物和遗址。在鲁卜哈利沙漠中,AI成功识别出一个5000年前的文明遗址,证明其在考古勘测中的潜力。

🎭 AI模拟古代文化:AI被用于模拟古代文化,帮助学者们理解古代人的思想和行为。通过分析历史文本,AI可以推断出古代社会的价值观和情感,尽管这种分析可能受到历史背景的限制。

🕹️ AI重建古代习俗:AI能够重建古代的游戏规则和其他文化习俗。例如,Digital Ludeme项目利用AI使古代游戏得以重现,为现代人提供了了解古代文化的新途径。

While teaching humans about their ancient civilizations may seem like an odd job for artificial intelligence, it has potential. Traditionally, archeological surveys and decipherment have been painstakingly tedious. This technology could automate or streamline much of the process, helping people uncover more about the past at an exponential rate. 

Why AI Is Needed to Teach About Ancient Civilizations

Spoken language is more or less universal. Throughout history, written language has been far rarer. The earliest known writing system is cuneiform, which was invented around 3100 B.C. by the Sumerians. Preliterate carved images date back as far as 4400 B.C., so academics have thousands of years of records to pour through and translate. 

There are also glyphs, pottery, graves, structures and statues, each with a unique story. For centuries, humans have painstakingly identified, deciphered and investigated these curios. Pursuit, discovery and success are rewarding — even thrilling. However, progress is slow. Sometimes, an exceedingly small number of subject matter exists, creating bottlenecks. 

What if researchers didn’t have to wait? What if they could accelerate their progress tenfold? With AI, that might be possible. An advanced, purpose-built model could uncover secrets that have been hidden for thousands of years. 

A machine learning model’s power lies in automation and evolution. Since it learns as it processes new information, it can evolve as research or archeological projects progress, effectively future-proofing itself. Moreover, it requires minimal human oversight and can act independently, enabling it to carry out complex multistep assignments on its own. 

What Historians Have Learned About Premodern Cultures Using AI

While modern AI is relatively new, scientists and archeologists have already used it to learn more about where premodern people lived and how they communicated. 

Words in Long-Dead Languages

One word can have countless meanings depending on the author’s intentions and the composition’s context. This complicates decipherment. Even simple, pointless phrases become complex puzzles. The joke “What does a clock do when it’s hungry? It goes back for seconds” is a great example because it is a play on words. In a different language, it may be meaningless.

In the past, computer programs stumbled over these nuances. Natural language processing technology uses part-of-speech tagging, tokenization and lemmatization to recognize individual morphemes. With this framework, an algorithm could grasp the intricacies of context and meaning, even in long-dead languages. 

Typically, deciphering ancient languages manually has been a laborious, error-prone task. Now, a model with NLP capabilities could decode written language in a fraction of the time. 

Take the figurative geoglyphs — pre-Columbian designs etched into desert sands — for instance. It took nearly one century to discover 430 Nazca geoglyphs around the Nazca Pampa. Using AI, a research team found 303 new ones, almost doubling the total known number within just six months of field surveying. 

Where Archeological Sites Are

Recently, a research team from Khalifa University in Abu Dhabi used AI to identify signs of a 5,000-year-old civilization underneath the dunes of the Rub al-Khali, the world’s largest desert. Since it stretches over 250,000 square miles, it is notoriously difficult to study. Shifting sands and harsh conditions complicate archeological surveys.

The research team used high-resolution satellite imagery and synthetic aperture radar technology to detect buried artifacts from space. Those results were fed into a machine learning model for image processing and geospatial analysis, automating the investigation. This approach was accurate within 50 centimeters, demonstrating its potential.  

Ways AI Is Improving Understanding of Bygone Eras

AI is also helping scientists understand more about how ancient civilizations functioned, giving them a clearer window into the past. 

Simulating Ancient Cultural Attitudes 

Michael Varnum, the social psychology area head and associate professor at Arizona State University, recently co-authored an opinion piece proposing using generative AI to simulate ancient cultural attitudes. 

Existing methods struggle to uncover the mentality or behaviors of long-dead cultures. Varnum says people in his field usually use indirect proxies like archival data on crime levels or divorce rates to infer people’s values and feelings. However, this approach is indirect and inaccurate. His solution is to train an AI to analyze historical texts.

However, while AI could infer people’s opinions and emotions from written records, its insights will be skewed. Historically, the ability to read and write has been rare. Varmum admits any AI-generated insights would likely come from educated, upper-class individuals. Since social class affects psychology, the analysis would not provide a wholly accurate glimpse into the past.

Reconstructing Premodern Customs 

Whenever archeologists recover objects from ancient burial sites or half-buried cities, guesswork is involved. Even if they know exactly what something was used for, they may be unable to determine how it works. 

In the 1970s, researchers unearthed a grave in a Bronze Age cemetery in Iran. They found the oldest intact board game ever discovered, dating back 4,500 years. It consisted of 27 geometric pieces, 20 circular spaces and four dice. No rulebook was buried, so they could only guess how to play. 

AI could recreate the rules, bringing back long-forgotten board games. The Digital Ludeme project is doing just that. Already, it has spanned three time periods and nine regions, making almost 1,000 games playable again. Today, these reconstructions are available online for anyone to play.

What More Can Be Learned From These Ancient Cultures?

There is still much more left to learn from AI. Cuneiform is one of the most interesting. Today, academics have access to around 5 million Sumerian words, millions more than Romans left in Latin. Many of the numerous clay tablets uncovered in the region have yet to be deciphered, and more are unearthed almost daily. 

To streamline the process, the research team uses AI to join tablet fragments, piecing together parts to accelerate decipherment. They are also training it to decipher cuneiform, which only a handful of experts are capable of. The speed of algorithmic processing could make this technology infinitely faster than humans. 

This new knowledge could fill gaps in history books. Even though humans have an expansive cultural history, many regions remain unexplored because they haven’t had the technology. With machine learning techniques and generative models, they can have a deeper understanding of the world, gaining a new perspective on history.

With AI’s help in uncovering archeological sites, deciphering long-dead languages and translating ancient texts, industry professionals could find new books, historical accounts, artworks and treasures. Those findings could be displayed in a museum or help descendants connect with their ancestors. 

The Future Outlook of AI Solutions as Archeological Tools

AI can decipher long-dead languages, locate ancient burial grounds and simulate ancient practices. Its findings could end up in history books or museums. Of course, academics should tread carefully. While this technology is powerful, bias, inaccuracies and hallucinations are not uncommon. A human-in-the-loop approach could help them mitigate these issues.

The post What AI Is Teaching Us About Ancient Civilizations appeared first on Unite.AI.

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人工智能 考古学 古代文明
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